Abstract

In the field of renewable energy, the extraction of parameters for solar photovoltaic (PV) cells is a widely studied area of research. Parameter extraction of solar PV cell is a highly non-linear complex optimization problem. In this research work, the authors have explored grey wolf optimization (GWO) algorithm to estimate the optimized value of the unknown parameters of a PV cell. The simulation results have been compared with five different pre-existing optimization algorithms: gravitational search algorithm (GSA), a hybrid of particle swarm optimization and gravitational search algorithm (PSOGSA), sine cosine (SCA), chicken swarm optimization (CSO) and cultural algorithm (CA). Furthermore, a comparison with the algorithms existing in the literature is also carried out. The comparative results comprehensively demonstrate that GWO outperforms the existing optimization algorithms in terms of root mean square error (RMSE) and the rate of convergence. Furthermore, the statistical results validate and indicate that GWO algorithm is better than other algorithms in terms of average accuracy and robustness. An extensive comparison of electrical performance parameters: maximum current, voltage, power, and fill factor (FF) has been carried out for both PV model.

Highlights

  • The depletion of fossil fuel resources and resulting environmental impact due to their usages embarks the need for alternate energy resources (Panwar et al, 2011; Tao et al, 2020)

  • It can be clearly analysed that grey wolf optimization (GWO) produces the least root mean square error (RMSE) of 9.4094E-04 which is very low as compared with the results of other five algorithms: gravitational search algorithm (GSA), particle swarm optimization and gravitational search algorithm (PSOGSA), SCA, chicken swarm optimization (CSO) and cultural algorithm (CA)

  • 4.4 Analysis of Electrical Performance In this subsection the proposed GWO technique is compared with the algorithms pattern search (PS), SA, harmony search (HS), particle swarm optimization (PSO) and genetic algorithm (GA) based on mainly four electrical performance parameters: maximum current (Im), voltage (Vm), power (Pm) and fill factor (FF) for the single diode model (SDM) and diode model (DDM) of PV cell

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Summary

Introduction

The depletion of fossil fuel resources and resulting environmental impact due to their usages embarks the need for alternate energy resources (Panwar et al, 2011; Tao et al, 2020). In this paper authors have implemented the grey wolf optimization (GWO) algorithm to estimate the optimized value of parameters for PV cells.

Results
Conclusion
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